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Current Knowledge on the Use of Computational Toxicology in Hazard Assessment of Metallic Engineered Nanomaterials

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Author(s)
Guangchao Chen
Willie Peijnenburg
Yinlong Xiao
Martina G. Vijver
Keywords
computational toxicology
hazard assessment
metallic engineered nanomaterials
(quantitative) structure–activity relationships
species sensitivity distributions
Biology (General)
QH301-705.5
Chemistry
QD1-999

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URI
http://hdl.handle.net/20.500.12424/1526886
Online Access
https://doaj.org/article/ad56994074ab44218137c7a98584a4a8
Abstract
As listed by the European Chemicals Agency, the three elements in evaluating the hazards of engineered nanomaterials (ENMs) include the integration and evaluation of toxicity data, categorization and labeling of ENMs, and derivation of hazard threshold levels for human health and the environment. Assessing the hazards of ENMs solely based on laboratory tests is time-consuming, resource intensive, and constrained by ethical considerations. The adoption of computational toxicology into this task has recently become a priority. Alternative approaches such as (quantitative) structure–activity relationships ((Q)SAR) and read-across are of significant help in predicting nanotoxicity and filling data gaps, and in classifying the hazards of ENMs to individual species. Thereupon, the species sensitivity distribution (SSD) approach is able to serve the establishment of ENM hazard thresholds sufficiently protecting the ecosystem. This article critically reviews the current knowledge on the development of in silico models in predicting and classifying the hazard of metallic ENMs, and the development of SSDs for metallic ENMs. Further discussion includes the significance of well-curated experimental datasets and the interpretation of toxicity mechanisms of metallic ENMs based on reported models. An outlook is also given on future directions of research in this frontier.
Date
2017-07-01
Type
Article
Identifier
oai:doaj.org/article:ad56994074ab44218137c7a98584a4a8
1422-0067
10.3390/ijms18071504
https://doaj.org/article/ad56994074ab44218137c7a98584a4a8
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